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  "notes": "The charts show the progression of antibody variants over generations, highlighting the improvement in ACE score and naturalness metrics.",
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      "text": "Bahas, S., Rakocevic, G. et al. Antibody optimization enabled by artificial intelligence predictions of binding affinity and naturalness (2022) pre-print in bioRxiv.",
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